Apr 8, 2025
5:00pm - 7:00pm
Summit, Level 2, Flex Hall C
Grace Guinan1,Michelle Smeaton1,Addison Salvador1,Hilary Egan1,Andrew Glaws1,Brian Wyatt2,Babak Anasori2,Steven Spurgeon1,3
National Renewable Energy Laboratory1,Purdue University2,University of Colorado Boulder3
Grace Guinan1,Michelle Smeaton1,Addison Salvador1,Hilary Egan1,Andrew Glaws1,Brian Wyatt2,Babak Anasori2,Steven Spurgeon1,3
National Renewable Energy Laboratory1,Purdue University2,University of Colorado Boulder3
Point defects such as vacancies and impurity atoms strongly impact the performance of 2D materials. Traditional efforts often rely on manual detection, a process that is time-intensive, prone to human error, and challenging to scale. Here we leverage machine learning (ML) methods to identify and quantify vacancies within 2D transition metal carbides (Ti
3C
2, MXenes), aiming to expedite detection while improving accuracy. MXenes exhibit valuable defect-defined electrochemical properties, but we currently lack statistical understanding of defect topology needed to fully harness these materials. We employ a convolutional neural network for semantic segmentation of experimental MXene images, opening an opportunity to conduct a rigorous statistical study on defect hierarchy while investigating local relaxation in the lattice. We show how the integration of ML can yield fundamental insight into point defects, providing a powerful tool that will play an increasingly crucial role in the future of materials science.